Method and system for measuring a relative position and orientation of range cameras using a movement of an object within a scene. In general, the method and system determine the relative pose between two cameras by measuring a path the movement of the object makes within a scene and calculating transformation parameters based on these measurements. These transformation parameters are used to determine the relative position of each camera with respect to a base camera. The system and method include other novel features, such as a data synchronization feature that uses a time offset between cameras to obtain the transformation parameters, and a technique that improves the robustness and accuracy of solving for the transformation parameters, and an interpolation process that interpolates between sampled points if there is no data at a particular instant in time.
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2. A computer-implemented method for calibrating range cameras, comprising:
inputting data captured by the range cameras;
synchronizing data captured by one range camera with data captured by another range camera; and
matching synchronized data from each of the range cameras to calibrate the range cameras and storing the matched synchronized data in a memory of a general-purpose computer device;
wherein the captured data includes a path of a moving person.
1. A calibration system for calibrating range cameras, comprising:
a data input module that transmits data measured by the range cameras;
a data synchronizer that synchronizes the data from each of the range cameras; and
a data matching processor that matches the synchronized data from each of the range cameras to calibrate the range cameras;
wherein the data is obtained from the range cameras measuring a path of a moving object;
wherein the moving object is a person moving around a scene.
4. A computer-implemented method for calibrating range cameras, comprising:
inputting data captured by the range cameras;
synchronizing data captured by one range camera with data captured by another range camera;
matching synchronized data from each of the range cameras to calibrate the range cameras;
computing transformation parameters from the synchronized data; and
using a least median of squares minimization technique to find data points in the synchronized data that give transformation parameters having a least amount of error and placing the transformation parameters in a memory of the computer.
3. A computer-implemented method for calibrating range cameras, comprising:
inputting data captured by the range cameras;
synchronizing data captured by one range camera with data captured by another range camera storing synchronized data in a memory of a general-purpose computing device;
matching synchronized data from each of the range cameras to calibrate the range cameras;
sampling two data points from the captured data, wherein the first data point is sampled before a time t and the second data point is sampled after the time t; and
linearly interpolating a data point at time t using the first and second data points.
5. A method for calibrating a first range camera and a second range camera, comprising:
selecting a coordinate system of the first range camera as a base coordinate system;
using the first range camera to capture first camera data and using the second range camera to capture second camera data;
synchronizing the first and second camera data with each other to obtain synchronized data; and
performing data matching of the synchronized data to generate calibration data for calibration of the first and second range cameras; and writing the calibration data to a memory of general-purpose computing device;
wherein the first camera data and the second camera data include a person moving around in a path.
6. A method for calibrating a first range camera and a second range camera, comprising:
selecting a coordinate system of the first range camera as a base coordinate system:
using the first range camera to capture first camera data and using the second range camera to capture second camera data;
synchronizing the first and second camera data with each other to obtain synchronized data;
performing data matching of the synchronized data to achieve calibration of the first and second range cameras;
finding data points in the first and second camera data that represent a minimum error
finding transformation parameters using the data points representing the minimum error storing the transformation parameters in a memory of general-purpose computing device;
using the transformation parameters to calibrate the first and second range cameras; and
using a least median of squares technique to determine the data points representing the minimum error.
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This application is a divisional application of U.S. patent application Ser. No. 10/927,373, entitled “Relative Range Camera Calibration,” filed Aug. 25, 2004, which is now U.S. Pat. No. 7,003,427, the entire contents of which are hereby incorporated by reference.
1. Field of the Invention
The present invention relates in general to range imaging systems and more particularly to a method and a system for measuring a relative position and orientation of range cameras using a movement of an object within a scene.
2. Related Art
Range imaging systems are used in a variety of applications to determine the three-dimensional (3-D) characteristics of a scene (a scene is an environment of interest). By way of example, these applications include 3-D scene reconstruction, 3-D object recognition, robot navigation, terrain mapping and object tracking. An important component of a range imaging system is a range camera. A range camera is a device that is used to measure a 3-D structure of a scene by providing range (or depth) information as measured from a plane on the camera. Thus, while a black and white camera provides a grayscale intensity of each pixel and a color camera provides a color of each pixel, a range camera provides a range (or distance to the 3-D scene) of each pixel. Range cameras use a variety of techniques to measure range including lasers, projected light patterns and stereo vision.
For some applications (such as tracking persons within a scene) the range imaging system may include more than one range camera because a single range camera may not have a sufficiently large field of view to monitor the entire scene. In order for multiple range cameras to work together, however, the cameras must be calibrated to determine a position and an orientation of each camera relative to one of the cameras (known as a relative pose). This calibration of multiple cameras enables the ranging system to convert 3-D measurements obtained from each camera into a common coordinate frame. For example, a path of a person in a scene may be measured by each camera in its local coordinate frame and converted to a common coordinate frame (such as a room-based coordinate system).
Several types of manual calibration techniques are used to calibrate the range cameras. One type of calibration technique uses a three-dimensional calibration chart to determine the relative position of each camera. This technique, however, is difficult to use and time-consuming because it requires that the calibration chart be positioned correctly within a scene.
Another type of calibration technique requires a user to monitor a scene and determine a plurality of reference points in the scene until the relative position of each camera can be determined. For example, a user references a number of common points in a scene (within each camera's field of view) and, if enough of these common points are found, the relative pose of the cameras may be determined. One disadvantage of this technique, however, is that it is difficult to implement in a consumer-based product because it is unlikely the consumer would want to perform such a complicated and time-consuming calibration process. Moreover, with both types of calibration techniques, if the consumer performed the calibration process improperly any results obtained from the range imaging system would be erroneous.
Accordingly, there exists a need for a range camera calibration method and system that is accurate and simple to use. Whatever the merits of the above-mentioned systems and methods, they do not achieve the benefits of the present invention.
To overcome the limitations in the prior art as described above and other limitations that will become apparent upon reading and understanding the present specification, the present invention includes a method and system for determining a relative position and orientation of a plurality of range cameras using spatial movement. In particular, a path of an object is measured by each range camera in the camera's local coordinate frame. Thus, the path of the object is observed by each camera but, because each camera has a different view of the object's path, the object path is reported by each camera in different local coordinate frames.
The present invention determines the relative location of each range camera by converting the object path as measured in each of the local coordinate frames to a common coordinate frame. The common coordinate frame may be, for example, with respect to one of the cameras or with respect to the scene (such as a room-based coordinate system).
In general, the novel method of the present invention includes measuring a path of an object in a scene as observed by each camera, performing matching of points of the path and obtaining transformation parameters (such as an offset distance ( )x, )y) and a rotation angle (2)), preferably by solving a system of transformation equations. These transformation parameters are used to determine the relative position of each camera. Moreover, the present invention includes other novel features such a data synchronization feature that uses a time shift between cameras to obtain the transformation parameters. In addition, the present invention includes a unique process that improves the robustness and accuracy of solving the system of transformation equations by using a process that is less sensitive to outlying points. For example, in a preferred implementation the present invention includes using a least median of squares technique to reduce the sensitivity of the solution to points extremely removed from the correct solution. The present invention also includes an interpolation process that interpolates between sampled points if there is no data at a particular instant in time. Further, the present invention includes a system for determining a relative position and orientation of range cameras using spatial movement that incorporates the method of the present invention.
Other aspects and advantages of the present invention as well as a more complete understanding thereof will become apparent from the following detailed description, taken in conjunction with the accompanying drawings, illustrating by way of example the principles of the invention. Moreover, it is intended that the scope of the invention be limited by the claims and not by the preceding summary or the following detailed description.
The present invention can be further understood by reference to the following description and attached drawings that illustrate the preferred embodiments. Other features and advantages will be apparent from the following detailed description of the invention, taken in conjunction with the accompanying drawings, which illustrate, by way of example, the principles of the present invention.
Referring now to the drawings in which like reference numbers represent corresponding parts throughout:
In the following description of the invention, reference is made to the accompanying drawings, which form a part thereof, and in which is shown by way of illustration a specific example whereby the invention may be practiced. It is to be understood that other embodiments may be utilized and structural changes may be made without departing from the scope of the present invention.
I. Exemplary Operating Environment
With reference to
Although the exemplary environment described herein employs a hard disk, a removable magnetic disk 120 and a removable optical disk 124, it should be appreciated by those skilled in the art that other types of computer readable media that can store data that is accessible by a computer, such as magnetic cassettes, flash memory cards, digital video disks, Bernoulli cartridges, random access memories (RAMs), read-only memories (ROMs), and the like, may also be used in the exemplary operating environment.
A number of program modules may be stored on the hard disk, magnetic disk 120, optical disk 124, ROM 110 or RAM 112, including an operating system 132, one or more application programs 134, other program modules 136 and program data 138. A user (not shown) may enter commands and information into the personal computer 100 through input devices such as a keyboard 140 and a pointing device 142. In addition, a camera 143 (or other types of imaging devices) may be connected to the personal computer 100 as well as other input devices (not shown) including, for example, a microphone, joystick, game pad, satellite dish, scanner, or the like. These other input devices are often connected to the processing unit 102 through a serial port interface 144 that is coupled to the system bus 106, but may be connected by other interfaces, such as a parallel port, a game port or a universal serial bus (USB). A monitor 146 or other type of display device is also connected to the system bus 106 via an interface, such as a video adapter 148. In addition to the monitor 146, personal computers typically include other peripheral output devices (not shown), such as speakers and printers.
The personal computer 100 may operate in a networked environment using logical connections to one or more remote computers, such as a remote computer 150. The remote computer 150 may be another personal computer, a server, a router, a network PC, a peer device or other common network node, and typically includes many or all of the elements described above relative to the personal computer 100, although only a memory storage device 152 has been illustrated in
When used in a LAN networking environment, the personal computer 100 is connected to the local network 154 through a network interface or adapter 158. When used in a WAN networking environment, the personal computer 100 typically includes a modem 160 or other means for establishing communications over the wide area network 156, such as the Internet. The modem 160, which may be internal or external, is connected to the system bus 106 via the serial port interface 144. In a networked environment, program modules depicted relative to the personal computer 100, or portions thereof, may be stored in the remote memory storage device 152. It will be appreciated that the network connections shown are exemplary and other means of establishing a communications link between the computers may be used.
II. Introduction
The method and system of the present invention include measuring the relative position and orientation of at least two range cameras. Range cameras, which are used to measure the 3-D structure of a scene, give the range (or depth) of each pixel. In order for two or more range cameras to work properly together, the system (such as a range imaging system) using the range cameras must be able to determine a relative position and orientation of each camera. This process of determining a relative pose of each camera (also known as calibration) enables the system to convert 3-D measurements from each camera into a common coordinate frame. Data from each camera is in the camera's local coordinate frame, and calibration of each camera makes the 3-D measurements from different cameras (in different local coordinate frames) consistent with each other.
The present invention measures a relative pose between a plurality of range cameras by measuring a relative pose between two cameras at a time. One camera is designated as a base camera and relative poses of the remainder of the cameras can be measured relative to the base camera. In general, the present invention calibrates range cameras based on a path of an object around a scene. The object path is determined in a ground plane (such as a floor of a room) as a function of time as measured by a range camera. The present invention determines the transformation parameters that take a point on the object path measured by a non-base camera and convert it to a point as it would be seen from the base camera. In addition, the present invention includes synchronizing data obtained from each camera, interpolating between sampled data points and using a robust error minimization technique to determine the transformation parameters.
III. General Overview
As shown in
The range imaging system also includes a first data module 232 that samples raw position data from the first camera 208 and a second data module 236 that samples raw position data from the second camera 216. These data modules 232, 236 may be, for example, computers or microprocessors. The first camera 208 supplies position data about the scene 224 in a first local coordinate frame and the second camera 216 supplies position data about the scene 224 in a second local coordinate frame. These two local coordinate frames generally are not the same, and calibration of the two cameras 208, 216 is necessary to express the position data from each camera in a common coordinate frame.
The sampled data from each camera is sent to an object tracker 240, which inputs the sampled data, calibrates the cameras 208, 216 and performs a coordinate transformation of the data. Further, an output module 248 is included in the range imaging system 200 that outputs scene data in a common coordinate system (such as a room-based coordinate system). In this example, the scene 224 includes a room 256 containing a first sofa 264 on one side of the room 256 and a second sofa 272 opposite the first sofa 264. In addition, a chair 280 is situated between to sofas 264, 272.
In this range imaging system, calibration of the range cameras 208, 216 generally is performed by having a person 288 (denoted by an “X”) move in a path 296 around the room 256. This path 296 is observed by the cameras 208, 216 in their respective local coordinate frames and the raw position data (such as (x,y) coordinates) of the path 296 is sampled by the data modules 232, 236. The data modules 232, 236 sample raw position data from each camera that includes the object path 296 described in a first local coordinate frame (as observed by the first camera 208) and the object path 296 described in a second local coordinate frame (as observed by the second camera 216).
The object tracker 240 receives the sampled data from the data modules 232, 236 and, using the present invention, calibrates cameras 208, 216 by determining the relative position and orientation of each camera. Once the cameras 208, 216 are calibrated any data from the cameras 208, 216 is converted into a common coordinate frame. This means, for example, a path of an object around the room 256 is expressed by the object tracker 240 in a common coordinate frame. The object tracker 240 sends data in a common coordinate frame to the output module 248, for output from the range imaging system 200. Further, the range imaging system 200 may transmit the data to a post-processing module 298 that may include, for example, a three-dimensional (3-D) scene reconstruction system, a 3-D object recognition system or a 3-D tracking system (which may be part of a vision-based computer interface system).
IV. Component Overview
The data points at the selected time are received by the data matching processor 520. In addition, the data matching processor 520 receives a desired coordinate frame as determined by the coordinate selector 430. The desired coordinate frame may be, for example, chosen by the user or selected at random. Any data from the cameras is expressed in the selected coordinate frame (also called the base coordinate frame). The data matching processor 520 matches data points at the selected time and computes transformation parameters using the data points. The error minimization processor 530 determines which data points give the most accurate transformation parameters.
V. Details of the Components and Operation
One of the cameras is selected as the base camera and the coordinate frame of chosen camera becomes the base coordinate frame (box 620). Transformation parameters are computed (box 630) from the sampled data received by the calibration module 330. These transformation parameters are then used to express data received from each camera in the base coordinate frame. Once this calibration process is performed, any data observed by a non-base camera can be expressed in the base coordinate frame as if the data had been observed by the base camera.
Before this data can be used to compute transformation parameters, however, at least two problems must be overcome. The first problem occurs if the clocks on the computers used to sample the data are unsynchronized by a constant time offset so that equivalent time readings on the computers do not correspond to the same actual time. The present invention corrects this problem by adding a time offset to the data. In particular, a time offset value is chosen (box 810) and applied to the camera data (box 815) in order to synchronize the data. The second problem occurs if the data from the cameras is not sampled at the same time leaving, for example, a data point at time t from a first camera without a corresponding data point from a second camera.
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The present invention corrects this problem by performing a linear interpolation (box 820) between two data points sampled before and after time t. This linear interpolation approximates where a data point would have been seen at time t. Next, data matching is performed to provide enough data points to compute the corresponding transformation parameters. Data matching matches data from different cameras at certain absolute times and uses these data points to compute transformation parameters.
For example, the present invention may determine minimum error by using a least squares technique that is discussed by S. Ma and Z. Zhang in “Computer Vision” (Chinese Academy of Science, 1998), the entire contents of which are hereby incorporated by reference. In a preferred embodiment, however, the present invention uses a least median of squares technique to determine minimum error. The least median of squares technique is more robust and less affected by data points that lie well away from the majority of data points. The least median of squares technique is discussed in detail by P. J. Rousseeuw and A. M. Leroy in “Robust Regression and Outlier Detection” (New York: John Wiley and Sons, 1987), the entire contents of which are hereby incorporated by reference.
When the transformation parameters with the least amount of error have been determined, they are stored along with the time offset value used to synchronize the data (box 840). Next, a determination is made whether more time offset points are needed (box 845). If more are needed, then another time offset value is selected (box 850) and the process begins again at box 815. Otherwise, an error minimization technique is used to find the time offset value with the least amount of error (box 855). As before, the least median of squares technique is a preferred technique to determine the minimum error.
It should be noted that in a preferred embodiment the transformation parameters are changes in the x and y coordinates and the rotation angle (such as Δx, Δy, θ). In addition, other transformation parameters may be used depending on the type of coordinate systems used (such as, for example, polar coordinate systems).
VI. Working Example
The following working example uses a range imaging system to track the movement of a person around a room and is provided for illustrative purposes only. In this working example, the method and system of the present invention are used to calibrate two range cameras in prior to using the range imaging system. As mentioned above, a variety of techniques (such as lasers and projected light patterns) are available for measuring range. Although in general the present invention is capable of using any ranging technique, in this working example stereo cameras were used. Stereo cameras were chosen because of their fast frame rate and because they are inexpensive and safe. In this working example, the application was tracking people as they move around a room. Further, two range cameras (camera 1 and camera 2) were used and calibrated based on a person's path when the person walked around the room.
The calibration process began by determining an (x,y) location of the person on a ground plane (in this working example, the floor of the room) as a function of time as measured by each range camera. This was accomplished using a technique described in co-pending U.S. patent application Ser. No. 09/455,822 entitled “A System and Process for Locating and Tracking a Person or Object in a Scene Using a Series of Range Images” by Barry Brumitt, filed on Dec. 6, 1999, the entire contents of which are hereby incorporated by reference. The present invention then chose a first camera as the base camera and designated the location measured by the base camera as (x1,y1) and a corresponding point from a second (non-base) camera (camera 2) as (x2,y2). The present invention was used to calibrate the two cameras by computing the transformation parameters of an angle θ and an offset (Δx,Δy) that made the following equation true:
Once the values of θ and (Δx,Δy) were determined, using this equation, any point seen by camera 2, (x2,y2) could be transformed into the coordinates of camera 1 (x1,y1). This means that a point as seen by camera 2 could be expressed in the local coordinate frame of camera 1 as if the point was actually seen by camera 1.
In order to synchronize the data coming from the first and second cameras, a time offset Δt was used to correct for the fact that a clock on the computer associated with the first camera (clock 1) was not synchronized with a clock on the computer associated with the second camera (clock 2). Thus, the points from the first camera and the second camera became (x1i,y1it1i) and (x2j,y2j,t2j+Δt), respectively. An initial guess of the time offset Δt was chosen and a point from each camera was sampled. Because the sampled points from each camera did not exactly match up with each other, the data obtained from the second camera was interpolated as follows.
First, for every point in from the first camera taken at time t1i, two points from the second camera were found that were taken as close as possible on either side of that time (i.e., points j− and j+ were found such that t2j
Next, point matching was performed and the transformation parameters corresponding to the least squared error was selected. Specifically, in this working example the least median of squares technique was used because it is a robust method. This method was implemented by picking random pairs of corresponding points from the data set ((x*1k,y*1k,x*2k,y*2k), 1≦k≦n). A pair of points was the minimum number needed to compute the candidate transformation parameters (i.e., θ and (Δx,Δy)). The two pairs of randomly chosen points were (x*1a,y*1a),(x*1b,y*1b),(x*2a,y*2a),(x*2b,y*2b), and the angle θ was computed as:
and the translation (Δx,Δy) was:
Δx=x*1a−x*2a cos(θ)+y*2a sin(θ)
Δy=y*1a−x*2a sin(θ)−y*2a cos(θ)
This θ and (Δx,Δy) served as a trial solution for the calibration problem based on the two randomly chosen pair of points. The solution was evaluated by computing a list of the squared errors between corresponding points:
ek=(x*1k−x*2k cos(θ)+y*2k sin(θ)−Δx)2+(y*1k−x*2k sin(θ)−y*2k cos(θ)−Δy)2
The quality of the solution was the median value of this list of squared errors. In this working example, our implementation, 100 random pairs of corresponding points were chosen and the transformation parameters o and (Δx,Δy) that corresponded to the least median of squares were used.
The least median of square technique was used as above to compute the best θ and (Δx,Δy) for a whole series of values of a time offset value (Δt). Whichever Δt gave the minimum least median of squares was chosen as the best one, and the corresponding θ and (Δx,Δy) were used for the final solution.
As an alternative to the least median of square technique described above, a least square solution could have been used to determine a minimum error. The least squares solution to the calibration problem computes the transformation parameters θ and (Δx,Δy) that minimize the sum of the Euclidean distances between corresponding points in (x*1k,y*1k,x*2k,y*2k), 1≦k≦n. The angle, θ, is given by
The above equation depends on the following equation, which computes the centroids of the points from each camera
The translation (Δx,Δy) is then given by
The θ and (Δx,Δy) computed are the solution to the calibration problem.
The quality (or amount of error) of the solution is given by the average squared distance between corresponding points:
For a series of values of the time offset, Δt, the transformation parameters θ, (Δx,Δy) and e2 are computed. The average squared distance between corresponding points, e2, will be a minimum for some value of Δt. We take the corresponding values of θ and (Δx,Δy) at the minimum value of Δt as the solution to the calibration problem.
This least squares solution works well in spite of small errors in tracking the position of the person in the room. However, there can be outlier points due to gross errors in the process that tracks the person. These outlier points are (x,y) locations that deviate greatly from the actual location of the person. In this case, the least squares solution will be drawn away from the right answer, and the a technique that is robust to such errors should be used, such as the least median of square technique described above.
The foregoing description of the preferred embodiments of the invention has been presented for the purposes of illustration and description. It is not intended to be exhaustive or to limit the invention to the precise form disclosed. Many modifications and variations are possible in light of the above teaching. It is intended that the scope of the invention be limited not by this detailed description of the invention, but rather by the claims appended hereto.
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